Litcius/Paper detail

Multicenter DSC–MRI-Based Radiomics Predict IDH Mutation in Gliomas

Georgios C. Manikis, Georgios Ioannidis, Loizos Siakallis, Katerina Nikiforaki, Michael Iv, Diana Vozlič, Katarina Surlan-Popović, Max Wintermark, Sotirios Bisdas, Kostas Marias

2021Cancers44 citationsDOIOpen Access PDF

Abstract

To address the current lack of dynamic susceptibility contrast magnetic resonance imaging (DSC-MRI)-based radiomics to predict isocitrate dehydrogenase (IDH) mutations in gliomas, we present a multicenter study that featured an independent exploratory set for radiomics model development and external validation using two independent cohorts. The maximum performance of the IDH mutation status prediction on the validation set had an accuracy of 0.544 (Cohen's kappa: 0.145, F1-score: 0.415, area under the curve-AUC: 0.639, sensitivity: 0.733, specificity: 0.491), which significantly improved to an accuracy of 0.706 (Cohen's kappa: 0.282, F1-score: 0.474, AUC: 0.667, sensitivity: 0.6, specificity: 0.736) when dynamic-based standardization of the images was performed prior to the radiomics. Model explainability using local interpretable model-agnostic explanations (LIME) and Shapley additive explanations (SHAP) revealed potential intuitive correlations between the IDH-wildtype increased heterogeneity and the texture complexity. These results strengthened our hypothesis that DSC-MRI radiogenomics in gliomas hold the potential to provide increased predictive performance from models that generalize well and provide understandable patterns between IDH mutation status and the extracted features toward enabling the clinical translation of radiogenomics in neuro-oncology.

Topics & Concepts

RadiogenomicsRadiomicsIsocitrate dehydrogenaseMagnetic resonance imagingMedicineKappaOncologyInternal medicineNuclear medicineRadiologyBiologyMathematicsEnzymeBiochemistryGeometryRadiomics and Machine Learning in Medical ImagingGlioma Diagnosis and TreatmentSarcoma Diagnosis and Treatment